Lagrangian duality and saddle points for sparse linear programming
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摘要:
The sparse linear programming (SLP) is a linear programming problem equipped with a sparsity constraint,which is nonconvex,discontinuous and generally NP-hard due to the combinatorial property involved.In this paper,by rewriting the sparsity constraint into a disjunctive form,we present an explicit formula of the Lagrangian dual problem for the SLP,in terms of an unconstrained piecewise-linear convex programming problem which admits a strong duality under bi-dual sparsity consistency.Furthermore,we show a saddle point theorem based on the strong duality and analyze two classes of stationary points for the saddle point problem.At last,we extend these results to SLP with the lower bound zero replaced by a certain negative constant.